Lin Lin, Wang Bin, Qi Jiajin, Wang Da, Huang Nantian
College of Information and Control Engineering, Jilin Institute of Chemical Technology, Jilin 132022, China.
Taian Power Supply Company, State Grid Shandong Electric Power Co. Ltd., Taian 271000, China.
Entropy (Basel). 2019 Apr 10;21(4):386. doi: 10.3390/e21040386.
To improve the accuracy of the recognition of complicated mechanical faults in bearings, a large number of features containing fault information need to be extracted. In most studies regarding bearing fault diagnosis, the influence of the limitation of fault training samples has not been considered. Furthermore, commonly used multi-classifiers could misidentify the type or severity of faults without using normal samples as training samples. Therefore, a novel bearing fault diagnosis method based on the one-class classification concept and random forest is proposed for reducing the impact of the limitations of the fault training sample. First, the bearing vibration signals are decomposed into numerous intrinsic mode functions using empirical wavelet transform. Then, 284 features including multiple entropy are extracted from the original signal and intrinsic mode functions to construct the initial feature set. Lastly, a hybrid classifier based on one-class support vector machine trained by normal samples and a random forest trained by imbalanced fault data without some specific severities is set up to accurately identify the mechanical state and specific fault type of the bearings. The experimental results show that the proposed method can significantly improve the classification accuracy compared with traditional methods in different diagnostic target.
为提高轴承复杂机械故障识别的准确性,需要提取大量包含故障信息的特征。在大多数关于轴承故障诊断的研究中,尚未考虑故障训练样本局限性的影响。此外,常用的多分类器在不使用正常样本作为训练样本时可能会误判故障类型或严重程度。因此,提出了一种基于单类分类概念和随机森林的新型轴承故障诊断方法,以减少故障训练样本局限性的影响。首先,使用经验小波变换将轴承振动信号分解为多个固有模态函数。然后,从原始信号和固有模态函数中提取包括多重熵在内的284个特征,构建初始特征集。最后,建立了一个基于由正常样本训练的单类支持向量机和由不平衡故障数据(不含某些特定严重程度)训练的随机森林的混合分类器,以准确识别轴承的机械状态和特定故障类型。实验结果表明,与传统方法相比,该方法在不同诊断目标下能显著提高分类准确率。